CVAIJul 29, 2025

Contrast-Prior Enhanced Duality for Mask-Free Shadow Removal

arXiv:2507.21949v1h-index: 11
Originality Incremental advance
AI Analysis

This addresses the challenge of removing shadows in real-world images where masks are hard to obtain, though it is incremental as it builds on prior mask-free techniques.

The paper tackles the problem of shadow removal without requiring shadow masks by using local contrast cues, and achieves state-of-the-art results among mask-free methods while being competitive with mask-based approaches.

Existing shadow removal methods often rely on shadow masks, which are challenging to acquire in real-world scenarios. Exploring intrinsic image cues, such as local contrast information, presents a potential alternative for guiding shadow removal in the absence of explicit masks. However, the cue's inherent ambiguity becomes a critical limitation in complex scenes, where it can fail to distinguish true shadows from low-reflectance objects and intricate background textures. To address this motivation, we propose the Adaptive Gated Dual-Branch Attention (AGBA) mechanism. AGBA dynamically filters and re-weighs the contrast prior to effectively disentangle shadow features from confounding visual elements. Furthermore, to tackle the persistent challenge of restoring soft shadow boundaries and fine-grained details, we introduce a diffusion-based Frequency-Contrast Fusion Network (FCFN) that leverages high-frequency and contrast cues to guide the generative process. Extensive experiments demonstrate that our method achieves state-of-the-art results among mask-free approaches while maintaining competitive performance relative to mask-based methods.

Foundations

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